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Novel Vision Transformer–Based Bi-LSTM Model for LU/LC Prediction—Javadi Hills, India

Sam Navin Mohanrajan, L. Agilandeeswari

2022Applied Sciences46 citationsDOIOpen Access PDF

Abstract

Continuous monitoring and observing of the earth’s environment has become interactive research in the field of remote sensing. Many researchers have provided the Land Use/Land Cover information for the past, present, and future for their study areas around the world. This research work builds the Novel Vision Transformer–based Bidirectional long-short term memory model for predicting the Land Use/Land Cover Changes by using the LISS-III and Landsat bands for the forest- and non-forest-covered regions of Javadi Hills, India. The proposed Vision Transformer model achieves a good classification accuracy, with an average of 98.76%. The impact of the Land Surface Temperature map and the Land Use/Land Cover classification map provides good validation results, with an average accuracy of 98.38%, during the process of bidirectional long short-term memory–based prediction analysis. The authors also introduced an application-based explanation of the predicted results through the Google Earth Engine platform of Google Cloud so that the predicted results will be more informative and trustworthy to the urban planners and forest department to take proper actions in the protection of the environment.

Topics & Concepts

Land coverComputer scienceTransformerCloud computingRemote sensingLand useGeographyCivil engineeringEngineeringOperating systemElectrical engineeringVoltageRemote Sensing in AgricultureLand Use and Ecosystem ServicesRemote-Sensing Image Classification
Novel Vision Transformer–Based Bi-LSTM Model for LU/LC Prediction—Javadi Hills, India | Litcius